|
|
1 - Setting up the Environment.mp4
|
MP4
|
91.5 MB
|
|
|
10 - Strings 1.mp4
|
MP4
|
28.9 MB
|
|
|
11 - Strings 2.mp4
|
MP4
|
28.8 MB
|
|
|
12 - 7-Dictionaries-Sets.ipynb
|
IPYNB
|
9 KB
|
|
|
12 - Dictionaries.mp4
|
MP4
|
25.3 MB
|
|
|
13 - Sets.mp4
|
MP4
|
107.3 MB
|
|
|
14 - 1.Pandas-Intro.ipynb
|
IPYNB
|
1.5 KB
|
|
|
14 - Introduction to Pandas.mp4
|
MP4
|
135 MB
|
|
|
15 - 2.Pandas-Series-Part-1.ipynb
|
IPYNB
|
5.2 KB
|
|
|
15 - Pandas Series Part 1.mp4
|
MP4
|
19.6 MB
|
|
|
16 - 3.Pandas-Series-Part-2.ipynb
|
IPYNB
|
3.6 KB
|
|
|
16 - Pandas Series Part 2.mp4
|
MP4
|
28.4 MB
|
|
|
17 - 4.Pandas-Series-Unique.ipynb
|
IPYNB
|
3.6 KB
|
|
|
17 - Pandas Series Unique.mp4
|
MP4
|
24.2 MB
|
|
|
18 - 5.Sorting-a-Series.ipynb
|
IPYNB
|
6.3 KB
|
|
|
18 - Pandas Series Sorting.mp4
|
MP4
|
19.7 MB
|
|
|
19 - 6.Dataframes-Intro.ipynb
|
IPYNB
|
4.5 KB
|
|
|
19 - Introduction to DataFrames.mp4
|
MP4
|
19.7 MB
|
|
|
2 - Introduction to Python Tools.mp4
|
MP4
|
153.5 MB
|
|
|
20 - 7-Data-from-csv-file.ipynb
|
IPYNB
|
2.4 KB
|
|
|
20 - Accessing csv files.mp4
|
MP4
|
73 MB
|
|
|
20 - titanic.csv
|
CSV
|
58.9 KB
|
|
|
21 - 8.Data-Inspection.ipynb
|
IPYNB
|
3.7 KB
|
|
|
21 - Data Inspection.mp4
|
MP4
|
54.8 MB
|
|
|
22 - 9.Dataframes-Index.ipynb
|
IPYNB
|
3.3 KB
|
|
|
22 - Dataframe Indexing 1.mp4
|
MP4
|
38.4 MB
|
|
|
23 - 11.Indexing-in-Dataframes.ipynb
|
IPYNB
|
2.6 KB
|
|
|
23 - Dataframe Indexing 2.mp4
|
MP4
|
17.6 MB
|
|
|
24 - 10.Dataframe-Filter.ipynb
|
IPYNB
|
2.9 KB
|
|
|
24 - Dataframe Filter.mp4
|
MP4
|
25.4 MB
|
|
|
25 - 12.Position-based-Index-iloc.ipynb
|
IPYNB
|
4 KB
|
|
|
25 - IPL.csv
|
CSV
|
37.3 KB
|
|
|
25 - Position based indexing using iloc.mp4
|
MP4
|
84.8 MB
|
|
|
26 - 13.Index-based-Slicing-iloc.ipynb
|
IPYNB
|
3.4 KB
|
|
|
26 - Dataframe Slicing using iloc.mp4
|
MP4
|
22.9 MB
|
|
|
26 - IPL.csv
|
CSV
|
37.3 KB
|
|
|
27 - 14.Label-based-Slicing-using-loc.ipynb
|
IPYNB
|
92.9 KB
|
|
|
27 - IPL.csv
|
CSV
|
37.3 KB
|
|
|
27 - Label based Slicing using loc.mp4
|
MP4
|
39.9 MB
|
|
|
28 - 15.loc-with-numeric-index.ipynb
|
IPYNB
|
2.5 KB
|
|
|
28 - Loc with numeric index.mp4
|
MP4
|
14.4 MB
|
|
|
29 - 16.Reset-index.ipynb
|
IPYNB
|
3.3 KB
|
|
|
29 - IPL.csv
|
CSV
|
37.3 KB
|
|
|
29 - Reset Index.mp4
|
MP4
|
35.5 MB
|
|
|
3 - 1.Arithmetic.ipynb
|
IPYNB
|
8.6 KB
|
|
|
3 - Arithmetic Operations in Python.mp4
|
MP4
|
33.3 MB
|
|
|
30 - 17.Rename-columns.ipynb
|
IPYNB
|
5.4 KB
|
|
|
30 - Rename Columns.mp4
|
MP4
|
16.8 MB
|
|
|
30 - data.csv
|
CSV
|
0 B
|
|
|
31 - 18.Conditional-Filter.ipynb
|
IPYNB
|
3.8 KB
|
|
|
31 - Conditional Filter.mp4
|
MP4
|
41.1 MB
|
|
|
31 - titanic.csv
|
CSV
|
58.9 KB
|
|
|
32 - 19.Advanced-Filter-Dataframe.ipynb
|
IPYNB
|
2.6 KB
|
|
|
32 - Advanced Filter.mp4
|
MP4
|
18.4 MB
|
|
|
32 - titanic.csv
|
CSV
|
58.9 KB
|
|
|
33 - 20.Handling-Missing-Values-Part-1.ipynb
|
IPYNB
|
2.1 KB
|
|
|
33 - Missing Values Part 1.mp4
|
MP4
|
10.2 MB
|
|
|
33 - missing.csv
|
CSV
|
102.4 B
|
|
|
34 - 21.Handling-Missing-Values-Part-2.ipynb
|
IPYNB
|
4.9 KB
|
|
|
34 - Missing Values Part 2.mp4
|
MP4
|
54.1 MB
|
|
|
34 - titanic.csv
|
CSV
|
58.9 KB
|
|
|
35 - 22.Groupby.ipynb
|
IPYNB
|
5.8 KB
|
|
|
35 - Group by.mp4
|
MP4
|
32.7 MB
|
|
|
36 - 23.Introduction-to-Time-Series-Data.ipynb
|
IPYNB
|
1.3 KB
|
|
|
36 - Intro to Time Series.mp4
|
MP4
|
23 MB
|
|
|
36 - minute.csv
|
CSV
|
16.9 KB
|
|
|
37 - 27-Downloading-Data-yfinance-API.ipynb
|
IPYNB
|
2.8 KB
|
|
|
37 - Downloading Data yfinance API.mp4
|
MP4
|
62.3 MB
|
|
|
38 - 24.Convert-string-to-datetime-column.ipynb
|
IPYNB
|
4.4 KB
|
|
|
38 - String to Datetime.mp4
|
MP4
|
36.5 MB
|
|
|
38 - minute.csv
|
CSV
|
16.9 KB
|
|
|
39 - 10.Accessing-Data.ipynb
|
IPYNB
|
25.9 KB
|
|
|
39 - Reading Files.mp4
|
MP4
|
88 MB
|
|
|
39 - minute.csv
|
CSV
|
16.9 KB
|
|
|
4 - 2.Data-Types.ipynb
|
IPYNB
|
6.4 KB
|
|
|
4 - Data Types.mp4
|
MP4
|
31.2 MB
|
|
|
40 - 11-Accessing-MySQL-Database.ipynb
|
IPYNB
|
5.1 KB
|
|
|
40 - Working with My Sql Database.mp4
|
MP4
|
57 MB
|
|
|
41 - 25.Slice-Time-Series-Data.ipynb
|
IPYNB
|
2.4 KB
|
|
|
41 - Slice Time Series Data.mp4
|
MP4
|
12.1 MB
|
|
|
41 - minute.csv
|
CSV
|
16.9 KB
|
|
|
42 - 28.Pivot.ipynb
|
IPYNB
|
2.2 KB
|
|
|
42 - Pivot DataFrame.mp4
|
MP4
|
19.5 MB
|
|
|
42 - bank-data.csv
|
CSV
|
244.3 KB
|
|
|
43 - 26.Resample.ipynb
|
IPYNB
|
3.5 KB
|
|
|
43 - Resample DataFrame.mp4
|
MP4
|
33.3 MB
|
|
|
43 - tick.csv
|
CSV
|
598.1 KB
|
|
|
44 - 29.Data-Normalization.ipynb
|
IPYNB
|
2.2 KB
|
|
|
44 - Data Normalization.mp4
|
MP4
|
52.4 MB
|
|
|
44 - bank-data.csv
|
CSV
|
244.3 KB
|
|
|
45 - 21-Frequency-Tables.ipynb
|
IPYNB
|
37.4 KB
|
|
|
45 - Frequency Tables.mp4
|
MP4
|
84.6 MB
|
|
|
45 - titanic.csv
|
CSV
|
58.9 KB
|
|
|
46 - 22-Pandas.ipynb
|
IPYNB
|
311.5 KB
|
|
|
46 - Visualization Part 1 Pandas.mp4
|
MP4
|
91.7 MB
|
|
|
46 - diamond.csv
|
CSV
|
4 KB
|
|
|
47 - Charts-with-Matplotlibs.ipynb
|
IPYNB
|
9.9 KB
|
|
|
47 - Visualization Part 2 Matplotlib.mp4
|
MP4
|
64 MB
|
|
|
47 - minute.csv
|
CSV
|
16.9 KB
|
|
|
48 - 30.Calculate-Price-Changes.ipynb
|
IPYNB
|
2.1 KB
|
|
|
48 - Calculate Price Changes.mp4
|
MP4
|
14.6 MB
|
|
|
48 - daily.csv
|
CSV
|
98.8 KB
|
|
|
49 - 31.Calculate-Financial-Returns.ipynb
|
IPYNB
|
2.1 KB
|
|
|
49 - Calculate Financial Returns.mp4
|
MP4
|
8 MB
|
|
|
49 - daily.csv
|
CSV
|
98.8 KB
|
|
|
5 - 4.Variables.ipynb
|
IPYNB
|
3.1 KB
|
|
|
5 - Variables.mp4
|
MP4
|
30.7 MB
|
|
|
50 - 33.TVPI-or-multiples.ipynb
|
IPYNB
|
46.4 KB
|
|
|
50 - TVPI.mp4
|
MP4
|
33.1 MB
|
|
|
50 - daily.csv
|
CSV
|
98.8 KB
|
|
|
51 - 34.CAGR-vs-Annual-Returns.ipynb
|
IPYNB
|
64.6 KB
|
|
|
51 - CAGR.mp4
|
MP4
|
27.1 MB
|
|
|
52 - 35.Geometric-Returns.ipynb
|
IPYNB
|
92.7 KB
|
|
|
52 - Geometric Returns.mp4
|
MP4
|
24.7 MB
|
|
|
53 - 32.Risk-vs-Reward.ipynb
|
IPYNB
|
2.3 KB
|
|
|
53 - Risk vs Returns.mp4
|
MP4
|
17.3 MB
|
|
|
53 - daily.csv
|
CSV
|
98.8 KB
|
|
|
54 - 36.Simple-vs-Compound-Interest.ipynb
|
IPYNB
|
5.8 KB
|
|
|
54 - Simple vs Compound Interest.mp4
|
MP4
|
22.8 MB
|
|
|
55 - 37-Continuous-Compounding.ipynb
|
IPYNB
|
5.1 KB
|
|
|
55 - Continuous Compounding.mp4
|
MP4
|
24.2 MB
|
|
|
56 - 38.Intro-to-Log-Returns.ipynb
|
IPYNB
|
2.3 KB
|
|
|
56 - Intro to log Returns.mp4
|
MP4
|
19.1 MB
|
|
|
57 - 39.Daily-Returns-vs-Log-Returns.ipynb
|
IPYNB
|
47.9 KB
|
|
|
57 - Daily Return vs Log Returns.mp4
|
MP4
|
46.4 MB
|
|
|
58 - 40.More-about-Log-Returns.ipynb
|
IPYNB
|
148.8 KB
|
|
|
58 - More About Log Returns.mp4
|
MP4
|
45.2 MB
|
|
|
59 - 25.Intro-to-Statistics.ipynb
|
IPYNB
|
231.5 KB
|
|
|
59 - Descriptive Statistics.mp4
|
MP4
|
108.4 MB
|
|
|
59 - marks.csv
|
CSV
|
204.8 B
|
|
|
6 - 5.Lists.ipynb
|
IPYNB
|
11.2 KB
|
|
|
6 - Intro to Lists.mp4
|
MP4
|
22.6 MB
|
|
|
60 - Five Point Summary.mp4
|
MP4
|
34.1 MB
|
|
|
60 - Five-point-Summary.ipynb
|
IPYNB
|
15.2 KB
|
|
|
61 - Moving Averages.mp4
|
MP4
|
89.3 MB
|
|
|
61 - Moving-Averages.ipynb
|
IPYNB
|
240.3 KB
|
|
|
61 - nifty.csv
|
CSV
|
98.8 KB
|
|
|
62 - 27.Confidence-Intervals.ipynb
|
IPYNB
|
69.2 KB
|
|
|
62 - Confidence Intervals.mp4
|
MP4
|
77 MB
|
|
|
63 - 26.Distributions.ipynb
|
IPYNB
|
135.3 KB
|
|
|
63 - Statistical Distributions.mp4
|
MP4
|
83.9 MB
|
|
|
64 - 28.Hypothesis.ipynb
|
IPYNB
|
42.6 KB
|
|
|
64 - Hypothesis Testing.mp4
|
MP4
|
87.5 MB
|
|
|
65 - 29-Analysis-of-variance.ipynb
|
IPYNB
|
21.5 KB
|
|
|
65 - Analysis of Variance.mp4
|
MP4
|
40 MB
|
|
|
66 - 30-Linear-Regression.ipynb
|
IPYNB
|
150.5 KB
|
|
|
66 - Linear Regression.mp4
|
MP4
|
78.1 MB
|
|
|
66 - mtcars.csv
|
CSV
|
1.7 KB
|
|
|
67 - 31-Logistic-Regression.ipynb
|
IPYNB
|
30.7 KB
|
|
|
67 - Logistic Regression.mp4
|
MP4
|
56.8 MB
|
|
|
67 - titanic.csv
|
CSV
|
58.9 KB
|
|
|
68 - 32-Decision-Trees.ipynb
|
IPYNB
|
175.3 KB
|
|
|
68 - Decision Trees.mp4
|
MP4
|
83.6 MB
|
|
|
69 - 33-Random-Forests.ipynb
|
IPYNB
|
5.8 KB
|
|
|
69 - Random Forests.mp4
|
MP4
|
39 MB
|
|
|
7 - Lists 2.mp4
|
MP4
|
40.8 MB
|
|
|
8 - Lists 3.mp4
|
MP4
|
39.8 MB
|
|
|
9 - 6.Tuples-and-strings.ipynb
|
IPYNB
|
8.6 KB
|
|
|
9 - Tuples.mp4
|
MP4
|
30.9 MB
|
|
|
Bonus Resources.txt
|
TXT
|
409.6 B
|
|
|
Get Bonus Downloads Here.url
|
URL
|
204.8 B
|